Publication
Vera Rief, Mirella Hladký, Minju Yoo, Stephanie Heel, Shintaro Sato, Tomohiro Nagashima
ECTEL2026 · 2026
@inproceedings{rief2026conversational,
title = {Conversational AI meets mindfulness: Exploring LLMs as a socio‑emotional layer in a math intelligent tutoring system},
author = {Vera Rief and Mirella Hladký and Minju Yoo and Stephanie Heel and Shintaro Sato and Tomohiro Nagashima},
booktitle = {ECTEL2026},
year = {2026},
}
Intelligent Tutoring Systems (ITSs) traditionally focus on cognitive support, often overlooking students’ emotional state. We developed an ITS that leverages Large Language Models (LLMs) to provide both cognitive and socio-emotional support in algebra through a pedagogical agent “Matt”. The system offers LLM-based mindful chats, breathing exercises, and mindful hints and feedback based on Kabat-Zinn’s seven principles of mindfulness to support students’ learning experiences and reduce math anxiety. In a classroom study with 7th graders, we compared a Mindful version against Cognitive support-only version. Although external disruptions limited the final analysis to 42 students, the results provide important exploratory insights. While no significant differences were found in math learning or state-math anxiety, the Mindful group reported significantly higher perceived socio-emotional support and warmth from the agent. Exploratory log data revealed that students in the Mindful condition completed fewer problem-solving steps with fewer hints requested. Our study demonstrates the feasibility of integrating mindfulness into ITSs through LLM-based interactions and positions LLMs as an adaptive, socio-emotional layer within cognitive math tutoring.